Applications and Challenges of Machine Learning to Enable Realistic Cellular Simulations

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Abstract

In this perspective, we examine three key aspects of an end-to-end pipeline for realistic cellular simulations: reconstruction and segmentation of cellular structures; generation of cellular structures; and mesh generation, simulation, and data analysis. We highlight some of the relevant prior work in these distinct but overlapping areas, with a particular emphasis on current use of machine learning technologies, as well as on future opportunities.

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Vasan, R., Rowan, M. P., Lee, C. T., Johnson, G. R., Rangamani, P., & Holst, M. (2020). Applications and Challenges of Machine Learning to Enable Realistic Cellular Simulations. Frontiers in Physics, 7. https://doi.org/10.3389/fphy.2019.00247

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